Turbine-level clustering for improved short-term wind power forecasting

At the present time, new types of data are collected at a turbine level, and can be used to enhance the skill of short-term wind power forecasts. In particular, high resolution measurements such as wind power and wind speed are gathered using SCADA systems. These data can be used to build turbine-ta...

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Veröffentlicht in:Journal of physics. Conference series 2022-05, Vol.2265 (2), p.22052
Hauptverfasser: González Sopeña, J M, Maury, C, Pakrashi, V, Ghosh, B
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Sprache:eng
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Zusammenfassung:At the present time, new types of data are collected at a turbine level, and can be used to enhance the skill of short-term wind power forecasts. In particular, high resolution measurements such as wind power and wind speed are gathered using SCADA systems. These data can be used to build turbine-tailored forecasting models, but at a higher computational cost to predict the production of the overall wind farm compared to a single farm-level model. Thus, we explore the potential of the DBSCAN clustering algorithm to group wind turbines and build forecasting models at a cluster-level to find a middle ground between forecasting accuracy and computational cost. The proposed approach is evaluated using SCADA data collected in two Irish wind farms.
ISSN:1742-6588
1742-6596
DOI:10.1088/1742-6596/2265/2/022052